Abstract

Apple (Malus domestica Borkh. cv. “Fuji”), an important cash crop, is widely consumed around the world. Accurately predicting preharvest apple fruit yields is critical for planting policy making and agricultural management. This study attempted to explore an effective approach for predicting apple fruit yields based on time-series remote sensing data. In this study, time-series vegetation indices (VIs) were derived from Planet images and analyzed to further construct an accumulated VI (∑VIs)-based random forest (RF∑VI) model and a Carnegie–Ames–Stanford approach (CASA) model for predicting apple fruit yields. The results showed that (1) ∑NDVI was the optimal predictor to construct an RF model for apple fruit yield, and the R2, RMSE, and RPD values of the RF∑NDVI model reached 0.71, 16.40 kg/tree, and 1.83, respectively. (2) The maximum light use efficiency was determined to be 0.499 g C/MJ, and the CASASR model (R2 = 0.57, RMSE = 19.61 kg/tree, and RPD = 1.53) performed better than the CASANDVI model and the CASAAverage model (R2, RMSE, and RPD = 0.56, 24.47 kg/tree, 1.22 and 0.57, 20.82 kg/tree, 1.44, respectively). (3) This study compared the yield prediction accuracies obtained by the models using the same dataset, and the RF∑NDVI model (RPD = 1.83) showed a better performance in predicting apple fruit yields than the CASASR model (RPD = 1.53). The results obtained from this study indicated the potential of the RF∑NDVI model based on time-series Planet images to accurately predict apple fruit yields. The models could provide spatial and quantitative information of apple fruit yield, which would be valuable for agronomists to predict regional apple production to inform and develop national planting policies, agricultural management, and export strategies.

Highlights

  • Model only reached 1.50, indicating that the model had a general performance in predicting apple fruit yield. These results indicated that the accuracy of the random forest (RF)∑ normalized difference vegetation index (NDVI) model was higher than that of the CASASR model when predicting apple fruit yield

  • This study developed two kinds of models using time-series vegetation indices (VIs), the RF∑ NDVI model and the CASASR model, to predict apple fruit yields, to explore effective approaches, and to predict regional apple fruit yield

  • The results showed that (1) ∑ NDVI was the optimal predictor to construct RF model for apple fruit yield, and the R2, root mean square error (RMSE), and residual predictive deviation (RPD)

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Summary

Introduction

Apple (Malus domestica Borkh.), an important cash crop, is widely consumed around the world [1]. As the leading apple-producing area, China has taken a supervisory position in the world apple industry [2]. By 2018, China controlled 46% of the apple production and 42% of the apple planting area worldwide, with annual production and planting areas of approximately 39.24 million tons and 2.07 million ha, respectively [3]. Given the importance of apple fruit production to the economy of China, predicting apple yields

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